Ncsnpp Celebahq 256
This model utilizes Stochastic Differential Equations (SDE) to achieve high-quality image generation by gradually injecting and removing noise, supporting unconditional image generation and various image processing tasks.
Downloads 254
Release Time : 7/19/2022
Model Overview
The model transforms complex data distributions into known prior distributions via Stochastic Differential Equations (SDE) and generates high-quality images using reverse-time SDE. It supports tasks such as unconditional image generation, image inpainting, and colorization.
Model Features
Stochastic Differential Equations (SDE) framework
Achieves smooth transformation between data distribution and prior distribution by gradually injecting and removing noise, supporting high-quality image generation.
Predictor-corrector framework
Corrects errors in discretized reverse-time SDE evolution, improving the accuracy and quality of generated images.
Neural ODE support
Provides equivalent neural ODEs, enabling precise likelihood computation and improved sampling efficiency.
High-resolution image generation
Demonstrates the ability to generate high-fidelity 1024 x 1024 images for the first time using a score-based generative model.
Model Capabilities
Unconditional image generation
Image inpainting
Image colorization
High-resolution image generation
Use Cases
Image generation
Unconditional image generation
Generates high-quality images from random noise, suitable for creative design and artistic creation.
Achieves an Inception score of 9.89 and FID of 2.20 on CIFAR-10.
Image processing
Image inpainting
Repairs missing or damaged parts of images, suitable for photo restoration and enhancement.
Image colorization
Adds color to black-and-white images, suitable for historical photo restoration and artistic creation.
Featured Recommended AI Models
Š 2025AIbase